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Książka = Book ; KS/1/2003/T33R05P07
Instytut Badań Systemowych. Polska Akademia Nauk ; Systems Research Institute. Polish Academy of Sciences
[4], 325-336 pages ; 21 cm ; Bibliography p. 336
In this paper, hardware implemented artificial neural networks (ANN's) capable of learning on silicon are considered. The ability to learn within a chip means that the network can fast adapt to varying conditions during the recall phase, i.e. can learn in operation. This is impossible in classical ANN's. Thinking about building such adaptive networks became realistic only recently due to advances in CMOS processes. An important and difficult task in hardware implementations of the ANN's is to find proper solutions for analog circuits that can play a role of basie network elements such as synapses, analog [ocal memories and activation Junction circuits. Concrete realizations of these circuits have been presented. The shown circuits were designed in the Institute of Telecommunication, ATR in Bydgoszcz, Poland. The performed experimental studies concern a prototype CMOS chip, fabricated by Nordic in the framework of EUROPRACTICE.
Creative Commons Attribution BY 4.0 license
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Systems Research Institute of the Polish Academy of Sciences
Library of Systems Research Institute PAS
Oct 15, 2021
Feb 1, 2021
0
https://rcin.org.pl./publication/193216